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Finally! #PHORHUM -- our 3D human reconstruction model from a single image -- is available to the research community 🎉 PHORHUM is joint work with Mihai Zanfir & Cristian Sminchisescu. How to get access: 👇

12,764 görüntüleme • 3 yıl önce •via X (Twitter)

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Thiemo Alldieck profil fotoğrafı
Thiemo Alldieck3 yıl önce

1. Go to 2. Request access 3. We will get back to you shortly If you or your group already has access to the "Google 3D Human Models" repository, you should already have access by now or will be given access in the next days! Questions? DMs are open!

Babusi Nyoni profil fotoğrafı
Babusi Nyoni3 yıl önce

@MihaiZanfir5 @CSminchisescu I waited so long for this you have no idea 🎉

Mohamed Abdelhamid 👨‍💻 profil fotoğrafı
Mohamed Abdelhamid 👨‍💻3 yıl önce

@MihaiZanfir5 @CSminchisescu 😆Amazing, I wish I have participated In that project, I proposed this idea for the graduation project 4 months ago, but unfortunately, our professors were not experienced enough and rejected this idea.and others It was the same but I wanted to apply it on yu-gi-yo monster card .

Mohamed Abdo profil fotoğrafı
Mohamed Abdo3 yıl önce

@MihaiZanfir5 @CSminchisescu Great job, congrats,

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